Redirigiendo al acceso original de articulo en 19 segundos...
Inicio  /  Algorithms  /  Vol: 16 Par: 2 (2023)  /  Artículo
ARTÍCULO
TITULO

Modeling Firm Search and Innovation Trajectory Using Swarm Intelligence

Ren-Raw Chen    
Cameron D. Miller and Puay Khoon Toh    

Resumen

We developed a swarm intelligence-based model to study firm search across innovation topics. Firm search modeling has primarily been ?firm-centric,? emphasizing the firm?s own prior performance. Fields interested in firm search behavior?strategic management, organization science, and economics?lack a suitable simulation model to incorporate a more robust set of influences, such as the influence of competitors. We developed a swarm intelligence-based simulation model to fill this gap. To demonstrate how to fit the model to real world data, we applied latent Dirichlet allocation to patent abstracts to derive a topic search space and then provide equations to calibrate the model?s parameters. We are the first to develop a swarm intelligence-based application to study firm search and innovation. The model and data methodology can be extended to address a number of questions related to firm search and competitive dynamics.

 Artículos similares

       
 
Rui Bi,Robert M Davison,Kosmas X Smyrnios    
Information technology (IT) is regarded as a facilitator for both small and large firms to speed up transactions between firms and their suppliers and customers, achieve real-time communication, lower transaction costs, and enhance speed and flexibility.... ver más

 
Michiel de Bok, Frank van Oort     Pág. 5 - 24
A growing body of empirical urban economic studies suggests that agglomeration and accessibility externalities are important sources of the uneven distribution of economic activities across cities and regions. At the same time, little is known about the ... ver más